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CNN-with-IBM-for-Singing-Voice-Separation

Getting Started

This is the source code to reproduce the results stated at my journal paper: Kin Wah Edward Lin, Balamurali B T, Enyan Koh, Simon Lui and Dorien Herremans. (2018) "Singing Voice Separation using a Deep Convolutional Neural Network Trained by Ideal Binary Mask and Cross Entropy" Special Issue on Deep Learning for Music and Audio in Springer’s Neural Computing and Applications Https://doi.org/10.1007/s00521-018-3933-z

Prerequisites

  • The source code must be executed using GPU with at least 12GB memory , e.g. NVIDIA GeForce GTX TITAN X.
  • Install the following python packages.
pip install resampy
pip install dsdtools

01 iKala Dataset

  • Please first download the trained CNN from the following site https://www.dropbox.com/sh/1p521wsk01buean/AAAx4S1uT7ToZP3rwqK-bbjIa?dl=0
  • Then put them under 01_iKalaProject Folder
  • model_20170930_1142 is trained in the first 180 epochs at the parameters initialization steps
  • model_20171001_1105 is trained in the next 120 epochs at the parameters initialization steps
  • model_20171002_0029 is trained in the first 180 epochs at the actual training
  • model_20171002_1756 is trained in the next 120 epochs at the actual training

Model usage

Before using model, change the path info in "checkpoint" file to match the full path of "mode_yyyymmdd_HHMM"

Dataset

Put all the files, which is under the Wavfile of the ikala dataset, to "01_iKalaProject/Wavfile" folder. iKala dataset can be obtained from the following site http://mac.citi.sinica.edu.tw/ikala/

Reproduce Paper Result

Simply execute the python files one by one, based on their sequency number

python 01_iKalaProject/00_prePro_HDF5.py
python 01_iKalaProject/01_parmInit_AE.py
python 01_iKalaProject/02_train_CNN.py
python 01_iKalaProject/03_postPro_Eval.py
python 01_iKalaProject/04_BSS_Eval.py

Paper Result

The excel file, which contains all results of each clip, can be found at https://www.dropbox.com/s/a9qumoobxm6a4u9/CNN_035.xlsx?dl=0

02 DSD100 Dataset

Model usage

Before using model, change the path info in "checkpoint" file to match the full path of "mode_yyyymmdd_HHMM"

Dataset

Put "Mixtures" and "Sources" Folders of the DSD100 dataset, to "02_DSD100Project/Wavfile" folder. DSD100 dataset can be obtained from the following site https://www.sisec17.audiolabs-erlangen.de/

Reproduce Paper Result

Simply execute the python files one by one, based on their sequency number

python 02_DSD100Project/00_prePro_HDF5.py
python 02_DSD100Project/01_parmInit_AE.py
python 02_DSD100Project/02_train_CNN.py
python 02_DSD100Project/03_postPro_Eval.py
python 02_DSD100Project/04_BSS_Eval.py

Paper Result

The excel file, which contains all results of each clip, can be found at https://www.dropbox.com/s/ijvpusrdp7lxu3l/CNN_015.mat?dl=0